Methods for automated essay analysis

ABSTRACT

An essay is analyzed automatically by accepting the essay and determining whether each of a predetermined set of features is present or absent in each sentence of the essay. For each sentence in the essay a probability that the sentence is a member of a certain discourse element category is calculated. The probability is based on the determinations of whether each feature in the set of features is present or absent. Furthermore, based on the calculated probabilities, a sentence is chosen as the choice for the discourse element category.

This application claims priority to U.S. Provisional Patent Application No. 60/263,223, filed Jan. 23, 2001, which is incorporated herein by reference.

FIELD OF THE INVENTION

This invention relates generally to document processing and automated identification of discourse elements, such as a thesis statements, in an essay.

BACKGROUND OF THE INVENTION

Given the success of automated essay scoring technology, such application have been integrated into current standardized writing assessments. The writing community has expressed an interest in the development of an essay evaluation systems that include feedback about essay characteristics to facilitate the essay revision process.

There are many factors that contribute to overall improvement of developing writers. These factors include, for example, refined sentence structure, variety of appropriate word usage, and organizational structure. The improvement of organizational structure is believed to be critical in the essay revision process toward overall essay quality. Therefore, it would be desirable to have a system that could indicate as feedback to students, the discourse elements in their essays.

SUMMARY OF THE INVENTION

The invention facilitates the automatic analysis, identification and classification of discourse elements in a sample of text.

In one respect, the invention is a method for automated analysis of an essay. The method comprises the steps of accepting an essay; determining whether each of a predetermined set of features is present or absent in each sentence of the essay; for each sentence in the essay, calculating a probability that the sentence is a member of a certain discourse element category, wherein the probability is based on the determinations of whether each feature in the set of features is present or absent; and choosing a sentence as the choice for the discourse element category, based on the calculated probabilities. The discourse element category of preference is the thesis statement. The essay is preferably in the form of an electronic document, such as an ASCII file. The predetermined set of features preferably comprises the following: a feature based on the position within the essay; a feature based on the presence or absence of certain words wherein the certain words comprise words of belief that are empirically associated with thesis statements; and a feature based on the presence or absence of certain words wherein the certain words comprise words that have been determined to have a rhetorical relation based on the output of a rhetorical structure parser. The calculation of the probabilities is preferably done in the form of a multivariate Bernoulli model.

In another respect, the invention is a process of training an automated essay analyzer. The training process accepts a plurality of essays and manual annotations demarking discourse elements in the plurality of essays. The training process accepts a set of features that purportedly correlate with whether a sentence in an essay is a particular type of discourse element. The training process calculates empirical probabilities relating to the frequency of the features and relating features in the set of features to discourse elements.

In yet other respects, the invention is computer readable media on which are embedded computer programs that perform the above method and process.

In comparison to known prior art, certain embodiments of the invention are capable of achieving certain advantages, including some or all of the following: (1) eliminating the need for human involvement in providing feedback about an essay; (2) improving the timeliness of feedback to a writer of an essay; and (3) cross utilization of essay automatic essay analysis parameters determined from essays on a given topic to essays on different topics or responding to different questions. Those skilled in the art will appreciate these and other advantages and benefits of various embodiments of the invention upon reading the following detailed description of a preferred embodiment with reference to the below-listed drawings.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 is a flowchart of a method for providing automated essay feedback, according to an embodiment of the invention; and

FIG. 2 is a flowchart of a process for training the automated essay feedback method of FIG. 1, according to an embodiment of the invention.

DETAILED DESCRIPTION OF A PREFERRED EMBODIMENT

I. Overview

Using a small corpus of essay data where thesis statements have been manually annotated, a Bayesian classifier can be built using the following features: a) sentence position, b) words commonly used in thesis statements, and c) discourse features, based on rhetorical structure theory (RST) parses. Experimental results indicate that this classification technique may be used toward the automatic identification of thesis statements in essays. Furthermore, the method generalizes across essay topics.

A thesis statement is generally defined as the sentence that explicitly identifies the purpose of the paper or previews its main ideas. Although this definition seems straightforward enough, and would lead one to believe that even for people to identify the thesis statement in an essay would be clear-cut. However, this is not always the case. In essays written by developing writers, thesis statements are not so clearly and ideas are repeated. As a result, human readers sometimes independently choose different thesis statements from the same student essay.

The value of this system is that it can be used to indicate as feedback to students, the discourse elements in their essays is advantageous. Such a system could present to students a guided list of questions to consider about the quality of the discourse. For instance, it has been suggested by writing experts that if the thesis statement of a student's essay could be automatically provided, the student could then use this information to reflect on the thesis statement and its quality. In addition, such an instructional application could utilize the thesis statement to discuss other types of discourse elements in the essay, such as the relationship between the thesis statement and the conclusion, and the connection between the thesis statement and the main points in the essay. In the teaching of writing, students are often presented with a “Revision Checklist.” The “Revision Checklist” is intended to facilitate the revision process. This is a list of questions posed to the student that help the student reflect on the quality of their writing. So, for instance, such a list might pose questions as in the following. (a) Is the intention of my thesis statement clear?, (b) Does my thesis statement respond directly to the essay question?, (c) Are the main points in my essay clearly stated?, and (d) Do the main points in my essay relate to my original thesis statement?

The ability to automatically identify, and present to students the discourse elements in their essays can help them to focus and reflect on the critical discourse structure of the essay. In addition, the ability for the application to indicate to the student that a discourse element could not be located, perhaps due to the ‘lack of clarity’ of this element could also be helpful. Assuming that such a capability were reliable, this would force the writer to think about the clarity of a given discourse element, such as a thesis statement.

II. Providing Automated Essay Analysis

FIG. 1 is a flowchart of a method 100 for providing automated essay analysis, according to an embodiment of the invention. The method 100 estimates which sentence in an essay is most likely to belong to a certain discourse category, such as thesis statement, conclusion, etc. The method 100 begins by accepting (110) an essay. The essay is preferably in electronic form at this step. The method 100 next performs a loop 115. The method 100 makes one pass through the loop 115 for each sentence in the essay. Each pass of the loop 115 gets (120) the next sentence and determines (130) the presence or absence of each feature A₁ . . . A_(n) (the feature A₁ . . . A_(n) having been predetermined to be relevant to the particular discourse category). If more than one discourse categories is evaluated, a different set of features A₁ . . . A_(n) may be predetermined for each discourse category. The loop 115 next computes (140) a probability expression for each sentence (S) for the discourse category (T) using the formula below. ${\log \left\lbrack {P\left( {TS} \right)} \right\rbrack} = {{\log \left\lbrack {P(T)} \right\rbrack} + {\sum\limits_{i}\begin{matrix} {\log \left\lbrack {{P\left( {A_{i}T} \right)}/{P\left( A_{i} \right)}} \right\rbrack} & {{{if}\quad A_{i}\quad {present}}} \\ {\log \left\lbrack {{P\left( {{\overset{\_}{A}}_{i}T} \right)}/{P\left( {\overset{\_}{A}}_{i} \right)}} \right\rbrack} & {{if}\quad A_{i}\quad {not}\quad {present}} \end{matrix}}}$

where P(T) is the prior probability that a sentence is in discourse category T; P(A_(i)|T) is the conditional probability of a sentence having feature A_(i), given that the sentence is in T; P(A_(i)) is the prior probability that a sentence contains feature A_(i); P({overscore (A)}_(i)|T) is the conditional probability that a sentence does not have feature A_(i), given that it is in T; and P({overscore (A)}_(i)) is the prior probability that a sentence does not contain feature A_(i). Performance can be improved by using a LaPlace estimator to deal with cases when the probability estimates are zero.

The method 100 next tests (150) whether the current resource is the last and loops back to the getting next sentence step 120 if not. After a probability expression has been evaluated for every sentence, the method 100 chooses (160) the sentence with the maximum probability expression for the particular discourse category. The method 100 can be repeated for each different discourse category.

Preferably, the accepting step 110 directly accepts the document in an electronic form, such as an ASCII file. In another embodiment, the accepting step 110 comprises the steps of scanning a paper form of the essay and performing optical character recognition on the scanned paper essay.

In one embodiment, the determining step 130 and computing step 140 repeat through the indexed list of features A₁ . . . A_(N) and updates the value of the probability expression based on the presence or absence of each feature A₁ . . . A_(N). Another embodiment of the determining step 130 and computing step 140 is that the presence or absence of all features A₁ . . . A_(N) could be determined (130) and then the probability expression could be computed (140) for that sentence. Those skilled in the art can appreciate that the steps of the method 100 can be performed in an order different from that illustrated, or simultaneously, in alternative embodiments.

III. Example of Use

As an example of the method 100, consider the case when the discourse category is a thesis statement, so that the method 100 estimates which sentence in an essay is most likely to be the thesis statement. Assume that the method 100 utilizes only positional and word occurrence features to identify the thesis statement, as follows:

A₁=W_FEEL=Occurrence of the word “feel.”

A₂=SP_(—)1=Being the first sentence in an essay.

A₃=SP_(—)2=Being the second sentence in an essay.

A₄=SP_(—)3=Being the third sentence in an essay.

A₅=SP_(—)4=Being the fourth sentence in an essay.

Etc.

Assume further that the prior and conditional probabilities for these features have been predetermined or otherwise supplied. Typically, these probabilities are determined by a training process (as described in detail below with reference to FIG. 2). For this example, assume that the above features were determined empirically by examining 93 essays containing a grand total of 2391 sentences, of which 111 were denoted by a human annotator as being thesis statements. From this data set, the following prior probabilities were determined by counting frequencies of feature occurrence out of the total number of sentences (where the preceding slash “/” denotes the “not” or complement operator):

P(THESIS)=111/2391=0.0464

P(W_FEEL)=188/2391=0.0786

P(/W_FEEL)=1−0.0786=0.9213

P(SP_(—)1)=93/2391=0.0388

P(/SP_(—)1)=1−0.0388=0.9611

P(SP_(—)2)=93/2391=0.0388

P(/SP_(—)2)=1−0.0388=0.9611

P(SP_(—)3)=93/2391=0.0388

P(/SP_(—)3)=1−0.0388=0.9611

P(SP_(—)4)=93/2391=0.0388

P(/SP_(—)4)=1−0.0388=0.9611

It can be seen from these numbers, that every essay in the training set contained at least four sentences. One skilled in the art could continue with additional sentence position feature probabilities, but only four are needed in the example that follows.

From the same data set, the following conditional probabilities were determined by counting frequencies of feature occurrence out of the thesis sentences only:

P(W_FEEL|THESIS)=35/111=0.3153

P(/W_FEEL|THESIS)=1−0.1861=0.6847

P(SP_(—)1|THESIS)=24/111=0.2162

P(/SP_(—)2|THESIS)=1−0.2162=0.7838

P(SP_(—)2|THESIS)=15/111=0.1612

P(/SP_(—)2|THESIS)=1−0.1612=0.8388

P(SP_(—)3|THESIS)=13/111=0.1171

P(/SP_(—)3|THESIS)=1−0.1171=0.8829

P(SP_(—)4|THESIS)=14/111=0.1262

P(SP_(—)4|THESIS)=1−0.1262=0.8739

With this preliminary data set, the method 100 begins by reading (110) the following brief essay:

Most of the time we as people experience a lot of conflicts in life. We put are selfs in conflict every day by choosing between something that we want to do and something that we feel we should do. For example, I new friends and family that they wanted to go to the army. But they new that if they went to college they were going to get a better education. And now my friends that went to the army tell me that if they had that chance to go back and make that choice again, they will go with the feeling that will make a better choice.

The method 100 loops through each sentence of the above essay, sentence by sentence. The first sentence, denoted S1, is “Most of the time . . . life.” The observed features of S1 are /W_FEEL, SP_(—)1, /SP_(—)2, /SP_(—)3 and /SP_(—)4, as this sentence is the first sentence of the essay and does not contain the word “feel.” The probability expression for this sentence is computed (140) as follows: $\begin{matrix} {{{Log}\left\lbrack {P\left( {T{S1}} \right)} \right\rbrack} = {{\log \left\lbrack {P(T)} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{\smallsetminus {W\_ FEEL}}T} \right)}/{P\left( {\smallsetminus {W\_ FEEL}} \right)}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{SP\_}1}T} \right)}/{P\left( {{SP\_}1} \right)}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{/{SP\_}}2}T} \right)}/{P\left( {{/{SP\_}}2} \right)}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{/{SP\_}}3}T} \right)}/{P\left( {{/{SP\_}}3} \right)}} \right\rbrack} +}} \\ {{\log \left\lbrack {{P\left( {{{/{SP\_}}4}T} \right)}/{P\left( {{/{SP\_}}4} \right)}} \right\rbrack}} \\ {= {{\log \quad\lbrack 0.0464\rbrack} +}} \\ {{{\log \quad\left\lbrack {0.6847/0.9213} \right\rbrack} +}} \\ {{{\log \left\lbrack {0.2162/0.0388} \right\rbrack} +}} \\ {{{\log \left\lbrack {0.8388/0.9611} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {0.8829/0.9611} \right\rbrack} +}} \\ {{\log \quad\left\lbrack {0.8739/0.9611} \right\rbrack}} \\ {= {- 0.8537}} \end{matrix}$

The second “sentence,” denoted S2, is actually two sentence, but the method can treat a group of sentences as single sentence, when, for example, the sentences are related in a certain manner, such as in this case where the second sentence begins with the phrase “For example . . . ” Thus, S2 in this example is “We put . . . army.” It's features are /SP_(—)1, SP_(—)2, /SP_(—)3, /SP_(—)4 and W_FEEL, as would be determined by the step 130. Computing (140) the probability expression for S2 is done as follows: $\begin{matrix} {{{Log}\left\lbrack {P\left( {T{S2}} \right)} \right\rbrack} = {{\log \left\lbrack {P(T)} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{W\_ FEEL}T} \right)}/{P({W\_ FEEL})}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{/{SP\_}}1}T} \right)}/{P\left( {{/{SP\_}}1} \right)}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{SP\_}2}T} \right)}/{P\left( {{SP\_}2} \right)}} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {{P\left( {{{/{SP\_}}3}T} \right)}/{P\left( {{/{SP\_}}3} \right)}} \right\rbrack} +}} \\ {{\log \left\lbrack {{P\left( {{{/{SP\_}}4}T} \right)}/{P\left( {{/{SP\_}}4} \right)}} \right\rbrack}} \\ {= {{\log \quad\lbrack 0.0464\rbrack} +}} \\ {{{\log \quad\left\lbrack {0.3153/0.0786} \right\rbrack} +}} \\ {{{\log \left\lbrack {0.7838/0.9611} \right\rbrack} +}} \\ {{{\log \left\lbrack {0.1612/0.0388} \right\rbrack} +}} \\ {{{\log \quad\left\lbrack {0.8829/0.9611} \right\rbrack} +}} \\ {{\log \quad\left\lbrack {0.8739/0.9611} \right\rbrack}} \\ {= {- 0.2785}} \end{matrix}$

Likewise, for the third sentence, it's features are /W_FEEL, /SP_(—)1, /SP_(—)2, SP_(—)3 and /SP_(—)4, and its probability expression value is −1.1717. The probability expression value for the fourth sentence is −1.1760. The maximum probability expression value is −0.2785, corresponding to S2. Thus, the second sentence is chosen (160) as the most likely thesis statement, according to the method 100.

Note that the prior probability term P(T) is the same for every sentence; thus, this term can be ignored for purposes of the method 100 for a given discourse category. Note also that while the preceding calculations were performed using base-10 logarithms, any base (e.g., natural logarithm, ln) can be used instead, provided the same base logarithm is used consistently.

IV. Constructing the Automatic Essay Analyzer

FIG. 2 is a flowchart of a process 200 for training the method 100, according to an embodiment of the invention. The process 200 begins by accepting (210) a plurality of essays. The essays are preferably in electronic form at this step. The method 200 then accepts (210) manual annotations. The method 200 then determines (225) the universe of all possible features A₁ . . . A_(n). Finally, method 200 computes (260) the empirical probability relating to each feature A_(i) across the plurality of essays.

The preferred method of accepting (210) the plurality of essays is in the form of electronic documents and the preferred electronic format is ASCII. The preferred method of accepting (210) the plurality of essays is in the form of stored or directly entered electronic text. Alternatively or additionally, the essays could be accepted (210) utilizing a method comprised of the steps of scanning the paper forms of the essays, and performing optical character recognition on the scanned paper essays.

The preferred method of accepting (220) manual annotations is in the form of electronic text essays that have been manually annotated by humans skilled in the art of discourse element identification. The preferred method of indicating the manual annotation of the pre-specified discourse elements is by the bracketing of discourse elements within starting and ending “tags” (e.g. <Sustained Idea> . . . </Sustained Idea>, <Thesis Statement> . . . </Thesis Statement>).

The preferred embodiment of method 200 then determines (225) the universe of all possible features for a particular discourse item. The feature determination step 225 begins by determining (230) the universe of positional features A₁ . . . A_(k). Next, the feature determination step 225 determines (240) the universe of word choice features A_(k+1) . . . A_(m). Finally, the feature determination step 225 determines (250) the universe of rhetorical structure theory (RST) features A_(m+1) . . . A_(N).

An embodiment of the positional features determination step 230 loops through each essay in the plurality of essays, noting the position of demarked discourse elements within each essay and determining the number of sentences in that essay.

An embodiment of the word choice features determination step 240 parses the plurality of essays and create a list of all words contained within the sentences marked by a human annotator as being a thesis statement. Alternatively or additionally, the word choice features A_(k+1) . . . A_(m) universe determination step 240 can accept a list of predetermined list of words of belief, words of opinion, etc.

An embodiment of the RST (rhetorical structure theory) features determination step 250 parses the plurality of essays to extract pertinent. The RST parser of preference utilized in step 250 is described in Marcu, D., “The Rhetorical Parsing of Natural Language Texts,” Proceedings of the 35th Annual Meeting of the Assoc. for Computational Linguistics, 1997, pp. 96-103, which is hereby incorporated by reference. Further background on RST is available in Mann, W. C. and S. A. Thompson, “Rhetorical Structure Theory: Toward a Functional Theory of Text Organization,” Text 8(3), 1988, pp. 243-281, which is also hereby incorporated by reference.

For each discourse element, the method 200 computes (260) the empirical frequencies relating to each feature A_(i) across the plurality of essays. For a sentence (S) in the discourse category (T) the following probabilities are determined for each A_(i): P(T), the prior probability that a sentence is in discourse category T; P(A_(i)|T), the conditional probability of a sentence having feature A_(i), given that the sentence is in T; P(A_(i)), the prior probability that a sentence contains feature A_(i); P({overscore (A)}_(i)|T), the conditional probability that a sentence does not have feature A_(i), given that it is in T; and P({overscore (A)}_(i)), the prior probability that a sentence does not contain feature A_(i).

The method 100 and the process 200 can be performed by computer programs. The computer programs can exists in a variety of forms both active and inactive. For example, the computer programs can exist as software program(s) comprised of program instructions in source code, object code, executable code or other formats; firmware program(s); or hardware description language (HDL) files. Any of the above can be embodied on a computer readable medium, which include storage devices and signals, in compressed or uncompressed form. Exemplary computer readable storage devices include conventional computer system RAM (random access memory), ROM (read only memory), EPROM (erasable, programmable ROM), EEPROM (electrically erasable, programmable ROM), and magnetic or optical disks or tapes. Exemplary computer readable signals, whether modulated using a carrier or not, are signals that a computer system hosting or running the computer programs can be configured to access, including signals downloaded through the Internet or other networks. Concrete examples of the foregoing include distribution of executable software program(s) of the computer program on a CD ROM or via Internet download. In a sense, the Internet itself, as an abstract entity, is a computer readable medium. The same is true of computer networks in general.

V. Experiments Using the Automated Essay Analyzer

A. Experiment 1—Baseline

Experiment 1 utilizes a Bayesian classifier for thesis statements using essay responses to one English Proficiency Test (EPT) question: Topic B. The results of this experiment suggest that automated methods can be used to identify the thesis statement in an essay. In addition, the performance of the classification method, given even a small set of manually annotated data, appears to approach human performance, and exceeds baseline performance.

In collaboration with two writing experts, a simple discourse-based annotation protocol was developed to manually annotate discourse elements in essays for a single essay topic. This was the initial attempt to annotate essay data using discourse elements generally associated with essay structure, such as thesis statement, concluding statement, and topic sentences of the essay's main ideas. The writing experts defined the characteristics of the discourse labels. These experts then completed the subsequent annotations using a PC-based interface implemented in Java.

Table 1 indicates agreement between two human annotators for the labeling of thesis statements. In addition, the table shows the baseline performance in two ways. Thesis statements commonly appear at the very beginning of an essay. So, we used a baseline method where the first sentence of each essay was automatically selected as the thesis statement. This position-based selection was then compared to the resolved human annotator thesis selection (i.e., final annotations agreed upon by the two human annotators) for each essay (Position-Based&H). In addition, random thesis statement selections were compared with humans 1 and 2, and the resolved thesis statement (Random&H). The % Overlap column in Table 1 indicates the percentage of the time that the two annotators selected the exact same text as the thesis statement. Kappa between the two human annotators was 0.733. This indicates good agreement between human annotators. This kappa value suggests that the task of manual selection of thesis statements was well-defined.

TABLE 1 Annotators % Overlap 1&2 53.0% Position-Based&H 24.0% Random&H 7.0%

B. Experiment 2

Experiment 2 utilized three general feature types to build the classifier: a) sentence position, b) words commonly occurring in a thesis statement, and c) RST labels from outputs generated by an existing rhetorical structure parser (Marcu, 1997). Trained the classifier to predict thesis statements in an essay. Using the multivariate Bernoulli formula, below, this gives us the log probability that a sentence (S) in an essay belongs to the class (T) of sentences that are thesis statements.

Experiment 2 utilized three kinds of features to build the classifier. These were a) positional, b) lexical, and c) Rhetorical Structure Theory-based discourse features (RST). With regard to the positional feature, we found that in the human annotated data, the annotators typically marked a sentence as being a thesis toward the beginning of the essay. So, sentence position was a relevant feature. With regard to lexical information, our research indicated that if we used as features the words in sentences annotated as thesis statements that this also proved to be useful toward the identification of a thesis statement. In addition information from RST-based parse trees is or can be useful.

Two kinds of lexical features were used in Experiment 2: a) the thesis word list, and b) the belief word list. For the thesis word list, we included lexical information in thesis statements in the following way to build the thesis statement classifier. For the training data, a vocabulary list was created that included one occurrence of each word used in a thesis statement (in training set essays). All words in this list were used as a lexical feature to build the thesis statement classifier. Since we found that our results were better if we used all words used in thesis statements, no stop list was used. The belief word list included a small dictionary of approximately 30 words and phrases, such as opinion, important, better, and in order that. These words and phrases were common in thesis statement text. The classifier was trained on this set of words, in addition to the thesis word vocabulary list.

According to RST, one can associate a rhetorical structure tree to any text. The leaves of the tree correspond to elementary discourse units and the internal nodes correspond to contiguous text spans. Text spans represented at the clause and sentence level. Each node in a tree is characterized by a status (nucleus or satellite) and a rhetorical relation, which is a relation that holds between two non-overlapping text spans. The distinction between nuclei and satellites comes from the empirical observation that the nucleus expresses what is more essential to the writer's intention than the satellite; and that the nucleus of a rhetorical relation is comprehensible independent of the satellite, but not vice versa. When spans are equally important, the relation is multinuclear Rhetorical relations reflect semantic, intentional, and textual relations that hold between text spans. For example, one text span may elaborate on another text span; the information in two text spans may be in contrast; and the information in one text span may provide background for the information presented in another text span. The algorithm considers two pieces of information from RST parse trees in building the classifier: a) is the parent node for the sentence a nucleus or a satellite, and b) what elementary discourse units are associated with thesis versus non-thesis sentences.

In Experiment 2, we examined how well the algorithm performed compared to the agreement of two human judges, and the baselines in Table 1. Table 2 indicates performance for 6 cross-validation runs. In these runs, ⅚ of the data were used for training and ⅙ for subsequent cross-validation. Agreement is evaluated on the ⅙ of the data. For this experiment inclusion of the following features to build the classifier yielded the results in Table 2: a) sentence position, b) both RST feature types, and c) the thesis word list. We applied this cross-validation method to the entire data set (A11), where the training sample contained 78 thesis statements, and to a gold-standard set where 49 essays (GS) were used for training. The gold-standard set includes essays where human readers agreed on annotations independently. The evaluation compares agreement between the algorithm and the resolved annotation (A&Res), human annotator 1 and the resolved annotation (1&Res), and human annotator 2 and the resolved annotation (2&Res). “% Overlap” in Table 2 refers to the percentage of the time that there is exact overlap in the text of the two annotations. The results are exceed both baselines in Table 1.

TABLE 2 Mean percent overlap for 6 cross-validation runs. Annotators N Matches % Overlap Agreement All:A&Res 15.5 7.7 50.0 GS:A&Res 9 5.0 56.0 1&Res 15.5 9.9 64.0 2&Res 15.5 9.7 63.0 C. Experiment 3

C. Experiment 3

A next experiment shows that thesis statements in essays appear to be characteristically different from a summary sentence in essays, as they have been identified by human annotators.

For the Topic B data from Experiment 1, two human annotators used the same PC-based annotation interface in order to annotate one-sentence summaries of essays. A new labeling option was added to the interface for this task called “Summary Sentence”. These annotators had not seen these essays previously, nor had they participated in the previous annotation task. Annotators were asked to independently identify a single sentence in each essay that was the summary sentence in the essay.

The kappa values for the manual annotation of thesis statements (Th) as compared to that of summary statements (SumSent) shows that the former task is much more clearly defined. We see that the kappa of 0.603 does not show strong agreement between annotators for the summary sentence task. For the thesis annotation task, the kappa was 0.733 which shows good agreement between annotators. In Table 3, the results strongly indicate that there was very little overlap in each essay between what human annotators had labeled as thesis statements in the initial task, and what had been annotated as a summary sentence (Th/SumSent Overlap). This strongly suggests that there are critical differences between thesis statements and summary sentences in essays that we are interested in exploring further. Of interest is that some preliminary data indicated that what annotators marked as summary sentences appear to be more closely related to concluding statements in essay.

TABLE 3 Kappa and Percent Overlap Between Manual Thesis Selections (Th) and Summary Statements (SumSent) Th SumSent Th/SumSent Overlap Kappa .733 .603 N/A % Overlap .53 .41 .06

From the results in Table 3, we can infer that thesis statements in essays are a different genre than, say, a problem statement in journal articles. From this perspective, the thesis classification algorithm appears to be appropriate for the task of automated thesis statement identification.

D. Experiment 4

How does the algorithm generalize across topics? The next experiment tests the generalizability of the thesis selection method. Specifically, this experiment answers the question whether there were positional, lexical, and discourse features that underlie a thesis statement, and whether or not they were topic independent. If so, this would indicate an ability to annotate thesis statements across a number of topics, and re-use the algorithm on additional topics, without further annotation. A writing expert manually annotated the thesis statement in approximately 45 essays for 4 additional topics: Topics A, C, D and E. She completed this task using the same interface that was used by the two annotators in Experiment 1. The results of this experiment suggest that the positional, lexical, and discourse structure features applied in Experiments 1 and 2 are generalizable across essay topic.

To test the generalizability of the method, for each EPT topic the thesis sentences selected by a writing expert were used for building the classifier. Five combinations of four prompts were used to build the classifier in each case, and that classifier was then cross-validated on the fifth topic, not used to build the classifier. To evaluate the performance of each of the classifiers, agreement was calculated for each ‘cross-validation’ sample (single topic) by comparing the algorithm selection to our writing expert's thesis statement selection. For example, we trained on Topics A, B, C, and D, using the thesis statements selected manually. This classifier was then used to select, automatically, thesis statements for Topic E. In the evaluation, the algorithm's selection was compared to the manually selected set of thesis statements for Topic E, and agreement was calculated. Exact matches for each run are presented in Table 4. In all but one case, agreement exceeds both baselines from Table 1. In two cases, where the percent overlap was lower, on cross-validation (Topics A and B), we were able to achieve higher overlap using the vocabulary in belief word list as features, in addition to the thesis word list vocabulary. In the case of Topic A, we achieved higher agreement only when adding the belief word list feature and applying the classical Bayes approach (see footnote 2). Agreement was 34% (17/50) for Topic B, and 31% (16/51) for Topic A.

TABLE 4 Performance on a Single Cross-validation Topic (CV Topic) Using Four Unique Essay Topics for Training. Training Topics CV Topic N Matches % Overlap ABCD E 47 19 40.0 ABCE D 47 22 47.0 ABDE C 31 13 42.0 ACDE B 50 15 30.0 BCDE A 51 12 24.0

The experiments described above indicate the following: With a relatively small corpus of manually annotated essay data, a multivariate Bernoulli approach can be used to build a classifier using positional, lexical and discourse features. This algorithm can be used to automatically select thesis statements in essays. Results from both experiments indicate that the algorithm's selection of thesis statements agrees with a human judge almost as often as two human judges agree with each other. Kappa values for human agreement suggest that the task for manual annotation of thesis statements in essays is reasonably well-defined. We are refining the current annotation protocol so that it defines even more clearly the labeling task. We expect that this will increase human agreement in future annotations, and the reliability of the automatic thesis selection since the classifiers are built using the manually annotated data.

The experiments also provide evidence that this method for automated thesis selection in essays is generalizable. That is, once trained on a few human annotated prompts, it could be applied to other prompts given a similar population of writers, in this case, writers at the college freshman level. The larger implication is that we begin to see that there are underlying discourse elements in essays that can be identified, independent of the topic of the test question. For essay evaluation applications this is critical since new test questions are continuously being introduced into on-line essay evaluation applications. It would be too time-consuming and costly to repeat the annotation process for all new test questions.

V. Conclusion

What has been described and illustrated herein is a preferred embodiment of the invention along with some of its variations. The terms, descriptions and figures used herein are set forth by way of illustration only and are not meant as limitations. Those skilled in the art will recognize that many variations are possible within the spirit and scope of the invention, which is intended to be defined by the following claims—and their equivalents—in which all terms are meant in their broadest reasonable sense unless otherwise indicated. 

What is claimed is:
 1. A method for automated analysis of an essay, the method comprising: accepting, by a computer system, an essay; determining, in the computer system, whether each of a predetermined set of features is present or absent in each sentence of the essay; for each sentence in the essay, calculating, in the computer system, a probability that the sentence is a member of a discourse element category, wherein the probability is based on the determinations of whether each feature in the set of features is present or absent; and assigning, by the computer system, a selected sentence to the discourse element category, based on the calculated probabilities.
 2. The method of claim 1 wherein the discourse element category is thesis statement.
 3. The method of claim 1 wherein the accepting step comprises accenting the essay in an electronic form.
 4. The method of claim 3 wherein the essay is an ASCII file.
 5. The method of claim 1 wherein the accepting step comprises: scanning a paper form of the essay; and performing optical character recognition on the scanned paper essay.
 6. The method of claim 1 wherein the predetermined sot of features comprises: a feature based on position within the essay.
 7. The method of claim 1 wherein the predetermined set of features comprises: a feature based on presence or absence of selected words.
 8. The method of claim 7 wherein the selected words comprise words empirically associated with thesis statements.
 9. The method of claim 7 wherein the selected words comprise words of belief.
 10. The method of claim 1 wherein the predetermined set of features comprises: a feature based on rhetorical relation.
 11. The method of claim 10 wherein the determining step comprises: parsing the essay using a rhetorical structure parser.
 12. The method of claim 1 wherein the calculating step comprises; utilizing a multivariate Bernoulli model.
 13. The method of claim 12 wherein the calculating step calculates the following quantity for each sentence: ${\log \left\lbrack {P\left( {TS} \right)} \right\rbrack} = {{\log \left\lbrack {P(T)} \right\rbrack} + {\sum\begin{matrix} {\log \left\lbrack {{P\left( {A_{i}T} \right)}/{P\left( A_{i} \right)}} \right\rbrack} & {{{if}\quad A_{i}\quad {present}}} \\ {\log \left\lbrack {{P\left( {{\overset{\_}{A}}_{i}T} \right)}/{P\left( {\overset{\_}{A}}_{i} \right)}} \right\rbrack} & {{if}\quad A_{i}\quad {not}\quad {present}} \end{matrix}}}$

wherein P(A_(i)|T) is a conditional probability that a sentence has a feature A_(i) given that the sentence is in a class T; P({overscore (A)}_(i)|T) is a conditional probability that a sentence does not have a feature A_(i) given that the sentence is in a class T; P(A_(i)) is a prior probability that a sentence contains a feature A_(i); and P({overscore (A)}_(i)) is a prior probability that a sentence does not contain a feature A_(i).
 14. The method of claim 13 wherein the assigning step comprises: assigning the sentence for which the quantity is largest to the discourse category element.
 15. The method of claim 1 wherein the calculating step comprises: utilizing a LaPlace estimator.
 16. The method of claim 1 further comprising: providing an essay question, the essay being an answer to the essay question.
 17. The method of claim 1 further comprising: repeating the calculating and assigning steps for one or more different discourse element categories.
 18. The method of claim 1 further comprising: outputting the selected sentence.
 19. The method of claim 1 further comprising: outputting a revision checklist.
 20. A computer readable medium on which is embedded a computer program, the computer program performing a method comprising: accepting an essay; determining whether each of a predetermined set of features is present or absent in each sentence of the essay; for each sentence in the essay, calculating a probability that the sentence is a member of a discourse element category, wherein the probability is based on the determinations of whether each feature in the set of features is present or absent; and assigning a selected sentence to the discourse element category, based on the calculated probabilities. 